1. Reducing Moisture Effects on Soil Organic Carbon Content Estimation in Vis-NIR Spectra With a Deep Learning Algorithm
- Author
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Wudi Zhao, Zhilu Wu, Zhendong Yin, and Dasen Li
- Subjects
Deep learning ,estimation ,soil moisture content (SMC) influence removal ,soil organic carbon (SOC) ,visible and near-infrared (Vis-NIR) spectra ,Ocean engineering ,TC1501-1800 ,Geophysics. Cosmic physics ,QC801-809 - Abstract
When estimating soil organic carbon using visible and near-infrared spectra measured in situ, the interference of soil moisture content (SMC) needs to be eliminated. The existing SMC removal methods are mainly based on spectral transformation, but they change the original form of the soil spectrum. In this article, a new deep-learning-based SMC influence removal network (MIRNet) is proposed to establish the relationship between the spectra of moist soil and that of dry soil. This method constructs a spectral extraction module with two 1-D ghost modules to extract soil spectral characteristics and a context extraction module with a two-layer dilated convolutional neural network to extract the context information of the spectra. Then, these extracted features are combined to reconstruct the SMC influence with a two-layer deconvolution using residual learning. Finally, a new loss function that combines spectral distance and spectral shape measurement (D-S loss) is proposed. The input of MIRNet is the moist soil spectra, and the output is the dry soil spectra. Black soil collected from Harbin and yellow-brown soil collected from Nanjing are selected as the research objects. The $ R^{2}$ reaches 0.703, 0.747, 0.907, 0.892, 0.866, 0.907, and 0.926, respectively, when using spectra processed by external parameter orthogonalization, orthogonal signal correction, support vector regression, convolutional neural network, deep neural network, denoising convolutional neural network, and MIRNet. Therefore, the proposed MIRNet achieves competitive results compared with these state-of-the-art methods.
- Published
- 2023
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